Shared Infrastructure for Big Data: Separating Compute and Storage

Join this webinar with EMC and BlueData for a discussion on cost-effective, high-performance Hadoop infrastructure for Big Data analytics.

When Hadoop was first introduced to the market 10 years ago, it was designed to work on dedicated servers with direct-attached storage for optimal performance. This was sufficient at the time, but enterprises today need a modern architecture that is easier to manage as your deployment grows.

Find out how you can use shared infrastructure for Hadoop – and separate compute and storage – without impacting performance for data-driven applications. This approach can accelerate your deployment and reduce costs, while laying the foundation for a broader data lake strategy.

Get insights and best practices for your Big Data deployment:
- Learn why data locality for Hadoop is no longer relevant – we’ll debunk this myth.
- Discover how to gain the benefits of shared storage for Hadoop, such as data protection and security.
- Find out how you can eliminate data duplication and run Hadoop analytics without moving your data.
- Get started quickly and easily, leveraging virtualization and container technology to simplify your Hadoop infrastructure.

Join this webinar to learn how separating compute from storage for Big Data delivers greater efficiency and cost savings.

Historically, Big Data deployments dictated the co-location of compute and storage on the same physical server. Data locality (i.e. moving computation to the data) was one of the fundamental architectural concepts of Hadoop.

But this assumption has changed – due to the evolution of modern infrastructure, new Big Data processing frameworks, and cloud computing. By decoupling compute from storage, you can improve agility and reduce costs for your Big Data deployment.

In this webinar, we’ll discuss how:

- Changes introduced in Hadoop 3.0 demonstrate that the traditional Hadoop deployment model is changing
- New projects by the open source community and Hadoop distribution vendors give further evidence to this trend
- By separating analytical processing from data storage, you can eliminate the cost and risks of data duplication
- Scaling compute and storage independently can lead to higher utilization and cost efficiency for Big Data workloads

Don’t miss this webinar. Learn how the traditional Big Data architecture is changing, and what this means for your organization.

Join this webinar to see how BlueData's EPIC software platform makes it easier, faster, and more cost-effective to deploy Big Data infrastructure and applications.

Find out how to provide self-service, elastic, and secure Big Data environments for your data science and analyst teams – either on-premises; on AWS, Azure, or GCP; or in a hybrid architecture.

In this webinar, learn how you can:

*Simplify Big Data deployments with a turnkey Big-Data-as-a-Service solution, powered by Docker containers
*Increase business agility with the ability to create on-demand Hadoop and Spark clusters, in just a few mouse clicks
*Deliver faster time-to-insights with pre-integrated images for common data science, analytics, visualization, and machine learning tools
*Separate compute and storage, and while ensuring security and control in a multi-tenant environment

See an EPIC demo – including our latest innovations – and discover the flexibility and power of Big-Data-as-a-Service with BlueData. It's BDaaS!

Panera Bread – with over 2,000 locations and 25 million customers in its loyalty program – relies on analytics to fine-tune its menu, operations, marketing, and more. Find out how they solve key business challenges using Hadoop and next generation Big Data technologies, including real-time data to analyze consumer behavior.

In this webinar, Panera Bread will discuss how they:

- Use a data-driven approach to improve customer acquisition, customer retention, and operational efficiency
- Spin up instant clusters for rapid prototyping and exploratory analytics, with real-time streaming platforms like Kafka
- Operationalize their data science and data pipelines in a hybrid deployment model, both on-premises and in the cloud

Join this webinar and learn how a leading healthcare company is yielding big dividends from Big Data.

Advisory Board, a healthcare firm serving 90% of U.S. hospitals, has multiple different business units and data science teams within their organization. In this webinar, they'll share how they use technologies like Hadoop and Spark to address the diverse use cases for these different teams – with a highly flexible and elastic platform leveraging Docker containers.

In this webinar, Advisory Board will discuss how they:

-Migrated their analytics from spreadsheets and RDBMS to a modern architecture using tools such as Hadoop, Spark, H2O, Jupyter, RStudio, and Zeppelin.
-Provide the ability to spin up instant clusters for greater agility, with shared and secure access to a treasure trove of data in their HDFS data lake.
-Shortened time-to-insights from days to minutes, slashed infrastructure costs by more than 80 percent, and freed up staff to innovate and build new capabilities.

Don’t miss this case study webinar. Find out how you can improve agility, flexibility, and ROI for your Big Data journey.

Join this webinar to learn the key considerations and options for container orchestration with Big Data workloads.

Container orchestration tools such as Kubernetes, Marathon, and Swarm were designed for a microservice architecture with a single, stateless service running in each container. But this design is not well suited for Big Data clusters constructed from a collection of interdependent, stateful services. So what are your options?

Watch this video to find out how Nasdaq improves agility and reduces costs for their Big Data infrastructure, while ensuring performance and security. To learn more about the BlueData software platform, visit www.bluedata.com

The BlueData EPIC software platform makes deployment of Big Data infrastructure and applications easier, faster, and more cost-effective – whether on-premises or on the public cloud.

With BlueData EPIC on AWS, you can quickly and easily deploy your preferred Big Data applications, distributions and tools; leverage enterprise-class security and cost controls for multi-tenant deployments on the Amazon cloud; and tap into both Amazon S3 and on-premises storage for your Big Data analytics.

The BlueData software platform is a game-changer for Big Data analytics. Watch this video to see how BlueData makes it easier, faster, and more cost-effective to deploy Big Data infrastructure and applications on-premises.

With BlueData, you can spin up Hadoop or Spark clusters in minutes rather than months – at a fraction of the cost and with far fewer resources. Leveraging Docker containers and optimized to run on Intel architecture, BlueData’s software delivers agility and high performance for your Big Data analytics.

Join this webinar to learn how to deploy a scalable and elastic architecture for Big Data analytics.

Hadoop and related technologies for Big Data analytics can deliver tremendous business value, and at a lower cost than traditional data management approaches. But early adopters have encountered challenges and learned lessons over the past few years.

In this webinar, we’ll discuss:

-The five worst practices in early Hadoop deployments and how to avoid them
-Best practices for the right architecture to meet the needs of the business
-The case study and Big Data journey for a large global financial services organization
-How to ensure highly scalable and elastic Big Data infrastructure

Discover the most common mistakes for Hadoop deployments – and learn how to deliver an elastic Big Data solution.

Join this webinar to learn how to get started with large-scale distributed data science.

Do your data science teams want to use R with Spark to analyze large data sets? How do you provide the flexibility, scalability, and elasticity that they need – from prototyping to production?

In this webinar, we’ll discuss how to:

*Evaluate compute choices for running R with Spark (e.g., SparkR or RStudio Server with sparklyr)
*Provide access to data from different sources (e.g., Amazon S3, HDFS) to run with R and Spark
*Create on-demand environments using Docker containers, either on-premises or in the cloud
*Improve agility and flexibility while ensuring enterprise-grade security, monitoring, and scalability

Find out how to deliver a scalable and elastic platform for data science with Spark and R.

Join this webinar to learn how to deploy Hadoop, Spark, and other Big Data tools in a hybrid cloud architecture.

More and more organizations are using AWS and other public clouds for Big Data analytics and data science. But most enterprises have a mix of Big Data workloads and use cases: some on-premises, some in the public cloud, or a combination of the two. How do you support the needs of your data science and analyst teams to meet this new reality?

In this webinar, we’ll discuss how to:

-Spin up instant Spark, Hadoop, Kafka, and Cassandra clusters – with Jupyter, RStudio, or Zeppelin notebooks
-Create environments once and run them on any infrastructure, using Docker containers
-Manage workloads in the cloud or on-prem from a common self-service user interface and admin console
-Ensure enterprise-grade authentication, security, access controls, and multi-tenancy

Don’t miss this webinar on how to provide on-demand, elastic, and secure environments for Big Data analytics – in a hybrid architecture.

Join this webinar to learn how to bring DevOps agility to data science and big data analytics.

It’s no longer just about building a prototype, or provisioning Hadoop and Spark clusters. How do you operationalize the data science lifecycle? How can you address the needs of all your data science users, with various skillsets? How do you ensure security, sharing, flexibility, and repeatability?

So you want to use Cloudera, Hortonworks, and MapR on AWS. Or maybe Spark with Jupyter or Zeppelin; plus Kafka and Cassandra. Now you can, all from one easy-to-use interface. Best of all, it doesn't require DevOps or AWS expertise.

In this webinar, we’ll discuss:

-Onboarding multiple teams onto AWS, with security and cost controls in a multi-tenant architecture
-Accelerating the creation of data pipelines, with instant clusters for Spark, Hadoop, Kafka, and Cassandra
-Providing data scientists with choice and flexibility for their preferred Big Data frameworks, distributions, and tools
-Running analytics using data in Amazon S3 and on-premises storage, with pre-built integration and connectors

Don’t miss this webinar on how to quickly and easily deploy Spark, Hadoop, and more on AWS – without DevOps or AWS-specific skills.

Implementing data science and machine learning at scale is challenging for developers, data engineers, and data analysts. Methods used on a single laptop need to be redesigned for a distributed pipeline with multiple users and multi-node clusters. So how do you make it work?

In this webinar, we’ll dive into a real-world use case and discuss:

- Requirements and tools such as R, Python, Spark, H2O, and others
- Infrastructure complexity, gaps in skill sets, and other challenges
- Tips for getting data engineers, SQL developers, and data scientists to collaborate
- How to provide a user-friendly, scalable, and elastic platform for distributed data science

Join this webinar and learn how to get started with a large-scale distributed platform for data science and machine learning.

Join this webinar with Cisco and BlueData to learn how to deliver greater agility and flexibility for Big Data analytics with Big-Data-as-a-Service.

Your data scientists and developers want the latest Big Data tools for iterative prototyping and dev/test environments. Your IT teams need to keep up with the constant evolution of new tools including Hadoop, Spark, Kafka, and other frameworks.

The DevOps approach is helping to bridge this gap between other developers and IT teams. Can DevOps agility and automation be applied to Big Data?

In this webinar, we'll discuss:

- A way to extend the benefits of DevOps to Big Data, using Docker containers to provide Big-Data-as-a-Service.
-How data scientists and developers can spin up instant self-service clusters for Hadoop, Spark, and other Big Data tools.
-The need for next-generation, composable infrastructure to deliver Big-Data-as-a-Service in an on-premises deployment.
-How BlueData and Cisco UCS can help accelerate time-to-deployment and bring DevOps agility to your Big Data initiative.

Join this webinar to learn how to run Hadoop and Spark on Docker in an enterprise deployment.

Today, most applications can be “Dockerized”. However, there are unique challenges when deploying a Big Data framework such as Spark or Hadoop on Docker containers in a large-scale production environment.

Watch this webinar to learn about Big-Data-as-a-Service from experts at Dell and BlueData.

Enterprises have been using both Big Data and Cloud Computing technologies for years. Until recently, the two have not been combined.

Now the agility and efficiency benefits of self-service elastic infrastructure are being extended to big data initiatives – whether on-premises or in the public cloud.

In this webinar, you’ll learn about:

- The benefits of Big-Data-as-a-Service – including agility, cost-savings, and separation of compute from storage
- Innovations that enable an on-demand cloud operating model for on-premises Hadoop and Spark deployments
- The use of container technology to deliver equivalent performance to bare-metal for Big Data workloads
- Tradeoffs, requirements, and key considerations for Big-Data-as-a-Service in the enterprise

Shannon Quinn, Assistant Professor at University of Georgia; and Nanda Vijaydev, Director of Solutions Management at BlueData

Join this webinar to learn how the University of Georgia (UGA) uses Apache Spark and other tools for Big Data analytics and data science research.

UGA needs to give its students and faculty the ability to do hands-on data analysis, with instant access to their own Spark clusters and other Big Data applications.

So how do they provide on-demand Big Data infrastructure and applications for a wide range of data science use cases? How do they give their users the flexibility to try different tools without excessive overhead or cost?

In this webinar, you’ll learn how to:

- Spin up new Spark and Hadoop clusters within minutes, and quickly upgrade to new versions

- Make it easy for users to build and tinker with their own end-to-end data science environments

In this webinar, you’ll learn how to:
- Quickly set up a dev/test lab environment to get started.
- Improve agility with a Big-Data-as-a-Service experience on-premises.
- Eliminate data duplication and decouple compute from storage for big data infrastructure.
-Leverage new innovations – including container technology – to simplify and scale deployment.

Watch this webinar and discover a fundamentally new approach to Big Data.

BlueData is transforming how enterprises deploy their Big Data applications and infrastructure. BlueData’s Big-Data-as-a-Service software platform leverages Docker container technology to make it easier, faster, and more cost-effective to deploy Big Data -- on-premises or in the public cloud. With BlueData, our customers can spin up Hadoop and Spark clusters within minutes, providing their data scientists with on-demand access to the analytical applications, data, and infrastructure they need. Founded in 2012 by VMware veterans and headquartered in Santa Clara, California, BlueData is backed by investors including Amplify Partners, Atlantic Bridge, Ignition Partners, and Intel Capital.